Title

Author

Abstract

The management and analysis of the data produced by high-throughput technologies are challenging. This paper discuss multiple hypothesis testing by focusing on developing and applying computationally intensive techniques to achieve the goal of simultaneous tests for each spotID the null hypothesis of no association between the expression levels and the responses or covariates. The software provides features where the user controls the amount of data that can be used for analyzing. The software also produce graph of the output which provide the user with easy viewing of the results.

Author Corner

RIT Links

NOTICE: We are currently experiencing issues regarding the readability of PDF files in the Chrome and Firefox browsers, and Adobe Reader. We are in the process of addressing this situation; in the meantime, we recommend using Internet Explorer or Safari, or Adobe Acrobat when viewing PDFs on RIT Scholar Works. If you have any questions or concerns, you can email us at .